An efficient large scale search system for video and multi-media content using a distributed database and search, and tiered search servers is described. Selected content is stored at the distributed local database and tier1 search server(s). content matching frequent queries, and frequent unidentified queries are cached at various levels in the search system. content is classified using feature descriptors and geographical aspects, at feature level and in time segments. queries not identified at clients and tier1 search server(s) are queried against tier2 or lower search server(s). search servers use classification and geographical partitioning to reduce search cost. Methods for content tracking and local content searching are executed on clients. The client performs local search, monitoring and/or tracking of the query content with the reference content and local search with a database of reference fingerprints. This shifts the content search workload from central servers to the distributed monitoring clients.
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10. A method for content monitoring, the method comprising:
organizing a reference database into a first tier database having search caches of popular and real time live content;
generating fingerprints in a user device for user watched content that includes popular and real time live content;
searching in the search caches for the fingerprints for the user watched content and returning to the user device a menu of options if a match is found in the search cache; and
displaying the menu of options on the user device to solicit user selection of one displayed option.
14. A method of performing search, the method comprising:
storing selected subsets of reference databases containing classified reference contents in a local cached database on a user device;
classifying content of a query generated on the user device to generate a classified query;
determining the information content of the classified query by using an entropy based information measurement on the classified query content;
performing a search with the classified query upon determining the entropy based information measured exceeds a predetermined threshold;
comparing the classified query with the classified reference contents stored in the local cached database on the user device to perform the search with the classified query;
generating a menu of option based on a reference database content that matched from the search with the classified query; and
displaying the menu of options on the user device to solicit user selection of one displayed option.
7. A method of performing search, the method comprising:
storing selected subsets of reference databases containing classified reference contents in a local cached database on a user device;
classifying content of a query generated on the user device to generate a classified query;
counting signatures of the classified query that are separated from other signatures in the classified query by a minimum distance to generate a query unique signature count;
performing a search with the classified query upon determining the query unique signature count exceeded a predetermined threshold;
comparing the classified query with the classified reference contents stored in the local cached database on the user device to perform the search with the classified query;
generating a menu of option based on a reference database content that matched from the search with the classified query; and
displaying the menu of options on the user device to solicit user selection of one displayed option.
1. A method for content monitoring, the method comprising:
organizing a reference database into a first tier database having search caches of popular and real time live content and long time storage of the popular and real time content and a second tier database having content classified in separate databases;
generating fingerprints in a user device for user watched content that includes popular and real time live content;
searching for the user watched content in a reference database;
generating a menu of option based on a reference database content that matched with the user watched content;
searching in the search caches for the user watched content and returning to the user device the menu of options if a match is found in the search caches;
searching in the first tier long time storage if the user watched content is not found in the search caches and returning to the user device the menu of options if a match is found in the long time storage;
searching in the second tier database in a classified separate database according to a class of the user watched content if the user watched content is not found in the long time storage and returning to the user device the menu of options if a match is found in the second tier database; and
displaying the menu of options on the user device to solicit user selection of one displayed option.
2. The method of
a found query cache storing content that matches frequent queries; and
an unidentified query cache storing queries that are not identified in the reference database.
3. The method of
4. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
downloading information concerning the user watched content from a url specified with the action parameter.
5. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
controlling the user device based on the action parameter.
6. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
skipping to a particular time location in the user watched content according to a time parameter and the action parameter.
8. The method of
determining to search a classified search database in a centralized server in response to determining the classified query did not find a match in the local cached database.
9. The method of
11. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
downloading information concerning the user watched content from a url specified with the action parameter.
12. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
controlling the user device based on the action parameter.
13. The method of
responding to a user selection of the one option according to an action parameter stored with the selected menu option in the user device;
skipping to a particular time location in the user watched content according to a time parameter and the action parameter.
15. The method of
determining to search a classified search database in a centralized server in response to determining the classified query did not find a match in the local cached database.
16. The method of
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This application claims the benefit of U.S. Provisional Patent Application Ser. No. 61/393,971 entitled “Distributed and Tiered Architecture for Content Search and Content Monitoring” filed on Oct. 18, 2010 which is hereby incorporated by reference in its entirety.
U.S. patent application Ser. No. 12/141,163 filed on Jun. 18, 2008 entitled “Methods and Apparatus for Providing a Scalable Identification of Digital Video Sequences”, U.S. patent application Ser. No. 12/141,337 filed on Jun. 18, 2008 entitled “Method and Apparatus for Multi-dimensional Content Search and Video Identification”, U.S. patent application Ser. No. 12/772,566 filed on May 3, 2010 entitled “Media Fingerprinting and Identification System”, U.S. patent application Ser. No. 12/788,796 filed on May 27, 2010 entitled “Multi-Media Content Identification Using Multi-Level Content Signature Correlation and Fast Similarity Search”, and U.S. patent application Ser. No. 13/102,479 filed on May 6, 2011 entitled “Scalable, Adaptable, and Manageable System for Multimedia Identification” have the same assignee as the present application, are related applications and are hereby incorporated by reference in their entirety.
The present invention generally relates to information retrieval in distributed multimedia data base systems.
Media applications which include video and audio database management, database browsing and identification are undergoing explosive growth and are expected to continue to grow. To address this growth, there is a need for a comprehensive solution related to the problem of creating a multimedia sequence database and identifying, within such a database, a particular multimedia sequence or sequences that match the content that is played out with or without media content distortions. Applications for such a comprehensive solution include video database mining, copyright content detection for video hosting web-sites, contextual advertising placement, and broadcast monitoring of video programming and advertisements.
There is a need for scalable search systems for large scale multi-media content identification and monitoring. Television channel organizations, advertising agencies, and other commercial and personal interests desire a system and method for monitoring and searching of broadcast television shows, films, and commercials and online broadcast of various cable and internet networks programming. Another application is monitoring and gathering statistics for large audiences viewing of various media on TVs, computers, and portable devices. Other popular applications of a content search and monitoring system are related to improving user experiences, enabling social communication, and various forms of advertising. To provide such applications, content to be identified or monitored is compared to content stored in one or more large databases of videos and media content. This represents a massive database search and correlation problem. To be of value the search systems should support real time database searching, monitoring, and updating. The sophistication, flexibility, and performance that are desired exceed the capabilities of current generations of software based solutions, in many cases, by an order of magnitude.
In one or more of its several aspects, the present invention recognizes and addresses problems such as those described above. To such ends, an embodiment of the invention addresses a method for content monitoring. Fingerprints are generated in a user device for user watched content that includes popular and real time live content. The user watched content is searched for in a reference database. A menu of option is generated based on a reference database content that matched with the user watched content. The menu of options is displayed on the user device to solicit user selection of one displayed option.
Another embodiment of the invention addresses a method of performing search and video tracking. Content of a query generated on a user device is classified to generate a classified query. The classified query is compared with classified reference contents stored in a local cached database on the user device. A menu of option is generated based on a reference database content that matched from a search with the query. The menu of options is displayed on the user device to solicit user selection of one displayed option.
Another embodiment of the invention addresses a method for fast updating of a search database. Signatures of a real time database update are stored in sequential order as received in a buffer on a user device. The signatures are sent from the user device to a remote database without locks. A remote database is updated with the signatures of the real time update.
Another embodiment of the invention addresses a method for fast updating of a search database. Two duplicate databases are created using an initial set of reference signatures. A first database of the two duplicate databases is searched as the active database. A second database of the two duplicate databases as the standby database is updated with new signatures for new content to be added to the search database. The standby database is switched with the active database to create a new standby database. The new standby database is updated with the new signatures for the new content.
Another embodiment of the invention addresses a method of publishing content for viewing on remote client devices. Metadata that includes menu options with links to control viewing of content on a remote client device is created on a server. The metadata is distributed to the remote client device which overlays the menu options on a viewing screen of the remote client device in response to selected metadata. The content is published in response to a selection of an option from the menu options.
These and other features, aspects, techniques and advantages of the present invention will be apparent to those skilled in the art from the following detailed description, taken together with the accompanying drawings and claims.
The present invention will now be described more fully with reference to the accompanying drawings, in which several embodiments of the invention are shown. This invention may, however, be embodied in various forms and should not be construed as being limited to the embodiments set forth herein. Rather, these embodiments are provided so that this disclosure will be thorough and complete, and will fully convey the scope of the invention to those skilled in the art.
It will be appreciated that the present disclosure may be embodied as methods, systems, or computer program products. Accordingly, the present inventive concepts disclosed herein may take the form of a hardware embodiment, a software embodiment or an embodiment combining software and hardware aspects. Furthermore, the present inventive concepts disclosed herein may take the form of a computer program product on a computer readable storage medium having non-transitory computer usable program code embodied in the medium. Any suitable computer readable medium may be utilized including hard disks, CD-ROMs, optical storage devices, flash memories, or magnetic storage devices.
Computer program code or software programs that are operated upon or for carrying out operations according to the teachings of the invention may be written in a high level programming language such as C, C++, JAVA®, Smalltalk, JavaScript®, Visual Basic®, TSQL, Python, Ruby, Perl, use of .NET™ Framework, Visual Studio® or in various other programming languages. Software programs may also be written directly in a native assembler language for a target processor. A native assembler program uses instruction mnemonic representations of machine level binary instructions. Program code or computer readable medium as used herein refers to code whose format is understandable by a processor. Software embodiments of the disclosure do not depend upon their implementation with a particular programming language.
The methods described in connection with the embodiments disclosed herein may be embodied directly in hardware, in a software module executed by a processor, or in a combination of the two. A software module may reside as non-transitory signals in RAM memory, flash memory, ROM memory, EPROM memory, EEPROM memory, registers, hard disk, a removable disk, a CD-ROM, or any other form of storage medium known in the art. A computer-readable storage medium may be coupled to the processor through local connections such that the processor can read information from, and write information to, the storage medium or through network connections such that the processor can download information from or upload information to the storage medium. In the alternative, the storage medium may be integral to the processor.
Systems and methods are described that are highly scalable to very large multimedia databases. A reference multimedia database can be modified by adding a unit of multimedia content or removing an existing unit of multimedia content while it is being used for multimedia identification. A unit of multimedia content may be a frame or a sequence of frames of a video, an audio clip, other multimedia formatted data, such as frames from a movie. A unit of multimedia content may also be a television show without advertisements, an advertisement, a song, or similar unit of communication. The search system can be tuned to the desired speed of multimedia matching by centralized and distributed systems, by replication of individual search machines or search machine clusters, by use of a hierarchical tier of search machines and reference databases, by partitioning of reference databases, by multimedia query caching, by local client search methods, by client tracking, or by combinations of the previously mentioned arrangements. As an example, the search system can be implemented in a centralized client server model, or as a distributed system, or by a combination of such approaches. Also, a distributed search system may be operable on a variety of distributed networks, such as a peer to peer (P2P) system. In addition, search functions or a complete search operation may be operable at the client.
The following nomenclature is used in describing the present invention. For example, multimedia content represents any video, audio or audio-visual content. Multimedia content may also represent a series of photographs or pictures, a series of audio files, or other associated data, such as 3D video content or 4D content in which sensory feedbacks such as touch feedback sensations are presented simultaneously with visual and audio content.
The terms signature and fingerprint both denote the same structure of a sequence of bits and may be used interchangeably. A fingerprint is generated to represent a unit of multimedia content using a fingerprinting method that operates on the unit of multimedia content. A descriptor denotes a bit structure that is an arrays of bits or an array numbers or a single number, and the descriptor is, in effect a digital description of a feature or property of audio or video content at a particular time. A signature, also known as a fingerprint, is generated from a descriptor. A cluster key is a type of hash key. A cluster index is a data structure that holds the signatures that have the same cluster key. A multimedia signature index is a data structure that is used to hold signatures associated with a unit of multimedia content.
A number of exemplary goals of a multimedia identification system include an ability to handle large capacity multimedia databases and high density media files. The multimedia identification system is to provide high performance and respond with accurate media identification when queried. Also, the overall design should be scalable to efficiently handle increasing capacity of the multimedia databases and an arbitrary length of a query sequence.
A number of embodiments the present invention include a system for large scale video identification and monitoring. The system consists of fingerprint clients and/or a tiered search system and a database of signatures representing the media content or object content. During a query with content from user viewed video, a series of steps of classification, database searching, and correlation are performed to identify the matching content at the central search servers or within the cached database.
For content identification and classification, content features need to be extracted. For video content, image and video features can be detected using various approaches such as key point detection across a set of filter scales, or using segmentation and contours to identify an object. Alternatively a combination of algorithms may be used including motion segmentation and the above methods to provide highly accurate feature and object detection. Signatures or video activity classification can be derived from detected motion between frames of a video sequence. Features of interest include color descriptors, texture descriptors, image classifiers, activity descriptors, face detectors and descriptors. Audio descriptors can include onset location, peaks or strongest coefficients of log-frequency cepstral coefficients (LFCC) or mel-frequency cepstral coefficients (MFCC) and the strongest frequency bands, and changes in audio envelope. Other content features that can be detected are audio events, audio phonemes, text in images using optical character recognition (OCR), or speech to text conversion.
The application of classifiers to the search system can improve search performance and capacity by orders of magnitude. The classification descriptors can be used to reduce the search space of each signature. A few methods on classifying content and using classification to separate databases are described and the result in significant cost benefits in various use cases of where millions of clients are supported.
Another method to optimize the search system is to use distributed search at the remote clients. A selected subsets of reference databases in the distributed search system can be stored locally at each client device and updated at planned intervals or, for example, in response to querying a central search system. After a query content is identified, further tracking and new content identification can be continued on the remote client thereby avoiding queries to the central search system. With this system it is also possible to query locally first and send a query to central server only if no content is found on local server.
Another method to optimize the search system is to organize the search in multiple tiers with the most frequent or likely content placed in the first search tier. If there is no match found, then search can be performed in the next search tiers that store less popular content. As a further improvement, classification can be used to reduce the search cost in the tier 2 or higher search levels, or at any search level included the distributed search system on clients. Tiered search is used to reduce search cost. If a first search reaches a small database with a high likelihood of finding a match, a search into the next tier possibly having 100's of servers is avoided where the probability of finding a match is only incrementally better. The tiered structure also advantageously addresses update and maintenance requirements. Real time updates are typically confined to early tiers and high performance servers. In most configurations described herein, the real time updates are performed on servers with smaller databases allowing updates and maintenance to be performed efficiently and with fewer memory management restrictions.
Another method addresses caching of popular and may include caching of expected content. The method also supports caching of popular unknown content to reduce search cost. Content that has been searched and not found at any tier of a search system may be considered as unknown content and marked as unidentified and cached in an unidentified query cache. The unknown or unidentified content may be identified at a later time by searching the unidentified query cache with new sources of popular content or even by human observation.
To provide for such needs,
The user site 102 may comprise, for example, a personal computer, a laptop computer, a tablet computer, or the like equipped with programs and interfaces to support data input and output and video fingerprinting and search monitoring that may be implemented both automatically and manually. The user site 102, for example, may store programs, such as the video fingerprinting and search process 112 which is an implementation of a content based video identification process of the present invention. The user site 102 may also have access to such programs through electronic media, such as may be downloaded over the Internet from an external server, accessed through a universal serial bus (USB) port from flash memory, accessed from disk media of various types, or the like. The fingerprinting and search system 100 may also suitably include more servers and user sites than shown in
User sites 102 and 103 and remote user device 114 may generate user video content which is uploaded over the Internet 104 to a server 106 for storage in the video database 108. The user sites 102 and 103 and remote user device 114, for example, may also operate a video fingerprinting and video identification process 112 to generate fingerprints and search for video content in the video database 108. The video fingerprinting and video identification process 112 in
The video database 108 may store video archives, as well as data related to video content stored in the video database 108. The video database 108 also may store a plurality of video fingerprints that have been adapted for use as described herein and in accordance with the present invention. It is noted that depending on the size of an installation, the functions of the video fingerprinting and search process 112 and the management of the video database 108 may be combined in a single processor system, such as user site 102 or server 106, and may operate as directed by separate program threads for each function.
The fingerprinting and search system 100 for both media fingerprinting and identification is readily scalable to very large multimedia databases, has high accuracy in finding a correct clip, has a low probability of misidentifying a wrong clip, and is robust to many types of distortion. The fingerprinting and search system 100 uses one or more fingerprints for a unit of multimedia content that are composed of a number of compact signatures, including cluster keys and associated metadata. The compact signatures and cluster keys are constructed to be easily searchable when scaling to a large database of multimedia fingerprints. The multimedia content is also represented by many signatures that relate to various aspects of the multimedia content that are relatively independent from each other. Such an approach allows the system to be robust to distortion of the multimedia content even when only small portions of the multimedia content are available.
Multimedia, specifically audio and video content, may undergo several different types of distortions. For instance, audio distortions may include re-encoding to different sample rates, rerecording to a different audio quality, introduction of noise and filtering of specific audio frequencies or the like. Sensing audio from the ambient environment allows interference from other sources such as people's voices, playback devices, and ambient noise and sources to be received. Video distortions may include cropping, stretching, re-encoding to a lower quality, using image overlays, or the like. While these distortions change the digital representation, the multimedia is perceptually similar to undistorted content to a human listener or viewer. Robustness to these distortions refers to a property that content that is perceptually similar will generate fingerprints that have a small distance according to some distance metric, such as Hamming distance for bit based signatures. Also, content that is perceptually distinct from other content will generate fingerprints that have a large distance, according to the same distance metric. A search for perceptually similar content, hence, is transformed to a problem of searching for fingerprints that are a small distance away from the desired fingerprints. Embodiments of this invention address accurate classification of queries. By accurately classifying query content, a classified query can be correctly directed to relevant search servers and avoid a large search operation that generally would involve a majority of database servers.
Further embodiments of this invention address systems and methods for accurate content identification. As addressed in more detail below, searching, content monitoring, and content tracking applications may be distributed to literally million of remote devices, such as tablets, laptops, smart phones, and the like. Content monitoring comprises continuous identification of content on one or more channels or sources. Content tracking comprises continued identification of already identified content without performing search on the entire database. For example, a television program may be identified by comparing a queried content with content already identified, such as television programs and primarily with the anticipated time location of the program. Also, when a query is sent to a search server, prior matching information that is known and associated with the query is also sent along with the query. Thus, the search server knows previous match time and can extrapolate to predict the likely reference time. If the server has additional information to modify the predicted time, for example to subtract time for an advertisement insertion, this is performed at the tracking function. A time line indicates predicted points in time. For example, if a match is made with a reference time 0:01:00 in a video clip, for example, to a remotely viewed content at time 10:00:00, then at time 10:02:00 in the remotely viewed content a match would be expected at 0:03:00 in the reference content in normal circumstances. In case an advertisement is to be inserted in the remotely viewed content, three possible approaches may be used. In a first approach, advertisements are detected and analyzed for duration in order to avoid searching for the same advertisements. In a second approach, by knowing the exact time of a shift in content to an advertisement, a query is performed at the predicted time and a different advertisement clip may be inserted in the remotely viewed content with adjustments made if there are differences in duration. In a third approach, by knowing the range of expected reference time to be within the 0:01:00 to 0:03:00, a search operation on the reference can be limited to the time range 0:01:00 to 0:03:00. This is in contrast to a number of current approaches that involve a large number of database servers for such applications.
In another embodiment, multiple selection methods are used to select content for tier1 search server(s), and for the next tier of search server(s). The content selection methods include selections made on temporal periods, such as a day of the week and or time of day, for example, geographical location, such as state, city, or street, for example, and also may be based on a calculated value of the content, such as, most popular televised content during Sunday afternoon. Temporal selection includes real time expected content, such as current broadcast content, short term popular content, such as shows broadcast within a day or days; and longer term popular content from movies, and previously recorded shows. Temporal selection may also include content that matches more frequently among recent queries and can also include frequent queries that do not match content in databases. Temporally selected content can vary as per the “interests” of the day, and in a tiered system reference content signatures can be moved or copied from lower search server(s) to the higher search server(s).
Content may also be partitioned as per the geographical distribution based on audience data and source of content. Similarly, for every user, geographical content of interest can be identified and this data can be used to reduce search cost on a tiered system having a large number of search servers especially at the lower search tiers. Content having a high calculated value can use less selective partitioning for queries and hence can be placed into a tier1 database which may use no partitioning or less selective partitioning.
The output of content analysis in the form of fingerprints is sent as a content query to a query distribution unit 202 of the search system. The tier 1 search servers 203, uses an expected broadcast content database 204, a popular short term content database 205, and a longer term popular content database 206. Expected content refers to the relationship of queries to content in DB. Based on statistics, 80% people watch live television, for example as selected from an electronic program guide (EPG) and this forms the “expected content” that is stored in database 204. In summary, the expected broadcast content database 204 includes selected real time broadcast content. The “popular short term content” database 205, illustrates the selection of most popular programs viewed in the recent day(s) for tier1 search. Short term content typically refers to content that is viral or popular within the last 24 hours. The database 205 stores popular short term content as identified by statistics engine in the search system. Popular media programs, viral content and the like are stored in the database 205. The longer term popular content stored in database 206, represent content that is popular in the recent weeks or a longer time frame and includes popular movies. For example, the database 206 stores longer term popular content that is steadily watched by people such as movies or certain shows. It appreciated that there may be some overlap between these groupings. Above all these groupings, the query distribution unit 202 exists to make it easier to decide how to optimize the search cost by distributing the content. The query distribution unit 202 is configurable to separate and distribute content in the tiered system in an efficient and organized manner. If no match is found at this tier, the query is sent to the next tier, at step 202 on path 207. The main goal tiered system 200 is to distribute content in such a way as to reduce search cost without reducing accuracy.
In another embodiment, content from tier2 can be selected to be moved to tier1, and vice-versa. This decision to move content can be based on updated measures of the popularity of the content at the given search servers.
In another embodiment, classification of queried content is used to reduce search workload and may also be used to expand information storage in a reduced capacity database in case of local search on clients. In this method, classification data, which includes signatures of popular content and extracts of content, are stored at the client nodes. When a close match is found for any content, more details of the content may be downloaded to the client and detailed content monitoring may then be performed at the client. The size of a content identification database can easily include millions of hours of content in a system having a plurality of servers and a composite very large database to be searched, resulting in a large search cost that can increase significantly as more content is added. It is more efficient to classify the content of a query and deliver the query to the most likely databases so as to avoid searching the entire database content.
In
The multi-media content could be classified in many ways including classification based on channel logos for television content or studios in case of movies. Other classifications can be based on learned or designated classes and may use various feature descriptors to represent each class. An example of a classification steps at the client is described and illustrated in
In another embodiment, classification can be used at every search level including client device search operations and each tier's search operations. A method of content analysis, fingerprinting and querying includes the following steps:
a) analyzing content to extract content features and use the extracted features to classify signatures and the content itself;
b) generating fingerprints for content; and
c) checking the fingerprint before issuing a query to the search system. If information content in the query fingerprint is low than probability of a match may also be low, the query check function looks for additional signatures that meets the information content requirement within a predetermined time limit or send the best fingerprint sample found. Latency and response requirements of a system may be used or estimated to specify the predetermined time limit for a query and search response operation.
As discussed above, a cluster key is a type of hash key. A cluster index is a data structure that holds the signatures that have the same cluster key. A multimedia signature index is a data structure that is used to hold signatures associated with a unit of multimedia content. Generally, every signature is associated with a cluster key, which is also considered a hash key. Using such a cluster key, a cluster index may be created which is a hash index. The cluster index is a hash data structure where the signatures are stored at a location according the cluster key. The signatures may be stored in a flat array, in a linked list, or in some other data structure.
When new video content is added to a search database, existing cluster indexes need to be updated with the new video content's signatures by placing the new signatures at appropriate locations in signature record arrays indicated by the cluster keys associated with these signatures. When updating video content that is currently being broadcasted, such as real time live content, the search database needs to be updated continuously. U.S. patent application Ser. No. 13/102,479 titled “Scalable, Adaptable, and Manageable System for Multimedia Identification” filed 6 May 2011 describes these updates as real-time updates. In a tiered search database, the first tier, where the real time live content would most likely reside, receives most of the query load. Hence, the first tier generally needs to be designed to perform fast updates. In the U.S. patent application Ser. No. 13/102,479, methods are described to carry out such updates using exclusive locks around the cluster index data structures. In another embodiment, a method is described herein that does not involve locks for such updates of the cluster index data structures.
The methods below can be used in concert with an existing database which may not be modified by real time updates. For example, fast updates can be performed on a separate database of indexes which does not disturb content in the existing database such as popular content but not necessarily live.
For cluster updates in a live content database, a maximum number of signatures for each cluster key is calculated and based on this calculation, space for the signatures associated with the cluster keys is pre-allocated. This maximum size can be determined by various means. For example, by design requirements and constraints, the total number of content viewing hours supported by the first tier is known. Using a measured number of signatures per second rate, an average number of signatures associated with each cluster index may be calculated. This average number of signatures is then modified to take into account statistical variations in the number of signatures in each cluster and to take into account the size of the reference database to determine the maximum number of signatures, as used herein.
A first method of implementing database for fast updates and without using locks uses two databases for fast updates. These two databases are in addition to databases that are not to be changed.
A second method of implementing database for fast updates and without using locks makes use of circular buffers.
It is noted that there a number of reasons the capacity of a circular buffer may need to be changed. For example, as the capacity of the reference database increases, the size of the circular buffer may need to be increased as well. In one embodiment of the present invention, a monitoring approach is utilized. For each signature that is overwritten in the circular buffer, a time difference between the time stamp of the new signature and the signature being overwritten is calculated. If this difference is less than a predetermined amount, a counter associated with that cluster key circular buffer is incremented. If the counter exceeds a predetermined threshold, the capacity of the circular buffer is increased again by a predetermined amount. After a circular buffer's capacity has been changed, the counter is reset. The counter may also be reset for other situations.
In
By providing an adequate storage capacity in the circular buffers, the method 270 doesn't generally need to calculate the total number of signatures in the update file and check if there is enough space to store these signatures in the signature buffer. With adequate capacity in the circular buffers, this update method 270 can be implemented without any read/write locks. The speed up in the updating process in this architecture is obtained at a risk that some overwriting of content signatures may occur. However, such risk is minimized by having sufficient capacity that by the time entries are overwritten, another copy of the content signatures is created somewhere in the search system.
While tracking the matched query at the remote client the downloaded fingerprints can be sampled to reduce the downloaded fingerprint size. An adaptive thresholding technique is used with lower threshold for tracked content based on statistically learned models. For example, a statistical model indicates that for a match with a 95% confidence of being a correct match a threshold is required that is at least 20% of the maximal score. The U.S. patent application Ser. No. 12/141,337 filed on Jun. 18, 2008 entitled “Method and Apparatus for Multi-dimensional Content Search and Video Identification” and incorporated by reference herein in its entirety describes how a threshold can be derived for a given query. For a tracking query, as described herein, a relative difference between two thresholds, one for time t1 and another for time t1+t2, can be used to determine a new threshold for a tracking query over time t2. For example, ThresholdTrack(t2)=Threshold(t1+t2)−Threshold(t1); where ThresholdTrack(t2) is the threshold for tracking query over time t2, Threshold(t1+t2) is the threshold for detecting a match over time t1+t2, and Threshold(t1) is the threshold for detecting a match over time t1.
Streaming video 422 at a client device feeds into the fingerprinting step 423 of the client device. The generated fingerprints 424 are stored locally on the client device. Each client device may receive a different stream of video and thus may generate a different set of fingerprints that are stored locally. The generated fingerprints are used to query the search system. At step 425, a client device's client query module sends a query via step 426 to a centralized video content search server which is searched at step 428. If the search server detects a match, it is returned at step 431 as the match result which is sent to the client device. In further queries where a previous match is indicated, the step 426 sends the query to the tracking function at step 430. The tracking function utilizes knowledge of the timing alignment identified by search at the central search system, to predict and evaluate the likely matching locations for currently played content on the remote client. The search sequence tracking function at step 430 accesses the indexed fingerprints in the central database at step 434. If the sequence tracking function at step 430 loses track of a match, as indicated at step 427, between a query and reference videos, it can initiate at step 435 a search on the central database at step 434. At step 431, the match result coming from the tracking function or the central server is communicated to the client.
Aging out of cached signatures is performed by ordering the cached content by the count of recent accesses and removing content that is accessed less often. A count of recent matches to each cached content is maintained and used to determine which cached content is to be removed.
The above method will reduce the query load cost on the search servers. If this method was not available, then the search cost can still be significantly large when significant fractions of the queries are not identified. For example, the queries (signatures) are selected for caching so as to reduce the search load on the tier 2 and lower search servers. If a significant portion of content that is watched on the client device 601 is not in the searched video database 604, such as 30% of the content watched, then these 30% queries will be added to the next search tier. However, if the more frequent queries that are not found are identified and further queries are avoided into the rest of the search system's other tiers, the percentage of queries to the remaining and largest part of the search servers can be reduced to say 10% instead of 30% in absence of this method. This represents a very significant gain in search performance. For example, if the subsequent search tier has 100× larger DB than the previous tier, then 30% of queries into this tier requires 30 times more search cost than if the query could have been applied to the first stage. Thus the cost of searching in the second tier, in this example, is the dominant search cost. By reducing the % of queries going to the next tier, in this case 30% to 10%, the method described herein provides a major search cost reduction (3× in this case).
A query popularity analysis process is used for queries that are identified. The identity of matching content and its frequency of querying are stored, and when the minimum matching queries and the rate of querying for a specific content is greater than an established threshold, the signatures for the identified content are selected to be in the database or as temporary cache of first or higher tiers of the search servers.
In contrast the U.S. patent application Ser. No. 13/102,479 titled “Scalable, Adaptable, and Manageable System for Multimedia Identification” filed 6 May 2011 describes “caching” with reference to
Classification for search partitioning by servers is used to reduce the search cost. Classification may be used to direct the video query to specific second tier and lower search servers. This method of targeting a video query to specific databases likely to have videos with similar classification reduces the cost of searching by orders of magnitude while losing little or no accuracy.
Classification for search partitioning by database partitioning on each server can be used to partition the local databases at an index level on each server. This method of partitioning database by index based on classification also reduces the cost of searching by orders of magnitude while losing little or no accuracy. The encoded bit representation of the classification information is used to speed up search operations, by utilizing these encoded bit representations are used as index lookup addresses for quick access to both query and reference information, for example. These encoded bit representations are a compact form of information useful for a targeted search in particular databases. This method relies on further sub-dividing the database for first search step by using the classification bits in the index.
System users can decide to use classification at any search level, from client search, to tier1 search, or tier2 search and so forth based on considerations of the cost and tolerable reduction in accuracy.
The method 700 of
The method 800 for organizing a search database utilizes database management techniques that include processing of popular content at step 803, fingerprinting and adding associated metadata in step 804, and adding the fingerprints and the associated metadata to a search server popular content database in step 815. The popular content will thus be added to a given search tier, often the second tier. In some cases, it is determined that the first tier will include some select popular content and the popular live broadcast and streaming channels since live broadcast constitutes a majority which may be at times almost 80% of TV viewers. A good portion of the popular content will then be stored in the second tier and the less popular content in lower tiers. Selected live broadcast content from radio or internet or cable and selected popular content is processed at step 801, fingerprinted and combined with metadata in step 805, and added to the first tiers search servers at step 814. All other relevant content is processed at step 802 including gaming, movies, TV shows, internet programs, advertisement. Such content can be added to other tiers if statistically determined to be relevant such as occurring more than a threshold of ten queries a day, for example. However, such content is generally added after fingerprinting and metadata addition in step 806 to the lower search tier servers at step 820, to support searching baseball content at step 821, searching classical music content at step 822, talk show content at step 823, and the like.
A not identified (NID) database of queries is collected during search operations and added typically to the first or second tiers, wherein content identified to be more frequent or more likely is added to the first tier and content identified to be less likely is added to the second tier. The NID database is added to search servers in step 816.
Live or real time broadcast content is received, fingerprinted, and added to the appropriate database from live streams to the content database. A subset of popular content, selected content, and selected live content are fingerprinted and added to the appropriate database of the first tier. As presented in
The method 850 for database management includes processing the popular content at step 853, fingerprinting and adding metadata at step 854, and adding signature and metadata database to search server at step 859. The popular content is added to a given search tier, often the second tier. Selected live broadcast content from radio or internet or cable and selected popular content is processed at step 851, fingerprinted and combined with metadata at step 855, and added to the first tiers search servers, at step 857. Other relevant content, including gaming, movies, TV shows, internet programs, advertisement is processed at step 852 and can also be added to other tiers if statistically determined to be relevant such as occurring more than a threshold of ten queries a day, for example. Such content is generally added after fingerprinting and metadata addition, at step 856. After classification at step 860, the query is directed, at step 861 to the lower search tier servers to support searching baseball content at step 864, searching classical music content at step 862, talk show content at step 863, and the like.
A not identified (NID) database of queries is collected during search operations and added typically to the first or second tiers, wherein the more likely content is added to the first tier and lesser likely content added to the second tier. The NID database is added to search servers in step 858.
The method 880 for NID database management includes at step 881, accumulating not id queries and maintaining the query statistics. At step 882, an aging process is used that eliminates less frequent queries. One such method for elimination is removing the less frequent queries and the queries that have not matched recently. At step 883, high volume queries are selected. At step 884, other relevant content, including gaming, movies, TV shows, internet programs, advertisements, youtube videos, user generated videos, viral ads, and the like are fingerprinted and added at step 890 to search servers used to match against the NID content. If this NID content database is large relative to the search database accessed by content queries, it is most likely used offline and not on the search system accessed by remote client queries. In offline use, the NID content database is used more specifically for the purpose of identifying NID queries. At step 892, the process 880 performs queries using the NID queries to the NID content database search system. At step 894, a determination is made whether there is a match. If there is no match, the process 880 proceeds to step 897. At step 897, the process 880 adds the NID query signatures to the NID database in the main online search system. If there is a match, then the process 880 proceeds to step 898. At step 898, the signatures and metadata for the matching content, or sections thereof, are added to a search server in the main online search system. In the tiered search system, for example, the matching content of the NID queries could be added to the popular content search tier or to the lower search tiers. The query statistics for a given NID query can be used to decide the destination of the matching content.
At step 903, a remote client performs fingerprinting on remote content that has been received, and at step 904 performs local search or search on a central server. At step 901, download servers send signature and metadata to the remote client to be stored on local signature databases. At step 906, the remote client tracks the incoming query content against the locally downloaded and stored signature databases at step 907, and makes requests, on path 902 to the download servers if necessary.
At step 908, the remote client processes metadata links for identified time location of scheduled media content, such as a scheduled TV show, and generates relevant menu options for the user. At step 909, the generated menu options are displayed. The menu options can include options to skip to particular time locations in a program, or to skip to a set of program highlights or lists, or to provide other information about the program such as actors, scenes, directors, backstage shots, or to link to social network generated information. The user is able to select these options and enabled to view only program highlights, or get social network comments on the show on a second screen application. At step 911, the user selects the option and is then able to directly and transparently control the source device which may be a set top box, buddy box or DVR, or DVD player, via step 913. While the user is moving between different points in a given program, the remote search and track system tracks the played content at steps 910 and 912, and is able to provide the relevant menu options to the user.
In another example, a person watching a recorded program or DVD could watch a curated version such as highlights of program, or a PG-13 version, or R rated version, or a G rated version of the same program by selecting the menu options on a second screen or remote or a second screen device doubled up as a remote device. Additionally, the user could also select to choose menu options where they can get additional information about the movie or scene or engage in a social network chat or message thread related to the baseball game they are currently watching.
Overall the search and tracking function behaves as a silent observer and provides the user with choices for viewing on the TV screen or a main screen or a second screen. The choices for viewing can use a pre-programmed set of edited content, and social channels for communication, and generic information sources.
The data structures and methods presented in
It is understood that other embodiments of the present invention will become readily apparent to those skilled in the art from the following detailed description, wherein various embodiments of the invention are shown and described by way of the illustrations. As will be realized, the invention is capable of other and different embodiments and its several details are capable of modification in various other respects, all without departing from the present invention. Accordingly, the drawings and detailed description are to be regarded as illustrative in nature and not as restrictive.
Merchant, Shashank, Kulkarni, Sunil Suresh, Pereira, Jose Pio, Ramanathan, Prashant, Stojancic, Mihailo
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